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Design and Evaluation of a Robust Optical Beam-Interruption-Based Vehicle Classifier System

机译:基于鲁棒光束干扰的车辆分类系统的设计与评估

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摘要

This paper presents the design and development of a novel optical vehicle classifier system, which is based on interruption of laser beams, that is suitable for use in places with poor transportation infrastructure. The system can estimate the speed, axle count, wheelbase, tire diameter, and the lane of motion of a vehicle. The design of the system eliminates the need for careful optical alignment, whereas the proposed estimation strategies render the estimates insensitive to angular mounting errors and to unevenness of the road. Strategies to estimate vehicular parameters are described along with the optimization of the geometry of the system to minimize estimation errors due to quantization. The system is subsequently fabricated, and the proposed features of the system are experimentally demonstrated. The relative errors in the estimation of velocity and tire diameter are shown to be within 0.5% and to change by less than 17% for angular mounting errors up to 30$^{circ}$ . In the field, the classifier demonstrates accuracy better than 97.5% and 94%, respectively, in the estimation of the wheelbase and lane of motion and can classify vehicles with an average accuracy of over 89.5%.
机译:本文介绍了一种新型的光学车辆分类器系统的设计和开发,该系统基于激光束的中断,适用于交通基础设施较差的地方。该系统可以估计速度,轴数,轴距,轮胎直径和车辆的行驶车道。系统的设计消除了对仔细的光学对准的需要,而提出的估算策略使估算对角度安装误差和道路不平坦不敏感。描述了估计车辆参数的策略以及系统几何形状的优化,以最小化由于量化引起的估计误差。随后制造了该系统,并通过实验证明了该系统的建议功能。对于速度和轮胎直径的估计,相对误差显示在0.5%以内,并且对于高达30的角度安装误差,其变化小于17%。 ^ {circ} $ 。在现场,分类器在轴距和运动车道的估计中分别显示出优于97.5%和94%的精度,并且可以对车辆进行分类,平均精度超过89.5%。

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